Automatic detection of optic canal fractures and recognition and segmentation of anatomical structures in the orbital apex based on artificial intelligence.

IF 4.6 2区 生物学 Q2 CELL BIOLOGY
Frontiers in Cell and Developmental Biology Pub Date : 2025-05-30 eCollection Date: 2025-01-01 DOI:10.3389/fcell.2025.1609028
Yu-Lin Li, Yu-Hao Li, Mu-Yang Wei, Guang-Yu Li
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Abstract

Background and objectives: Traumatic optic neuropathy (TON) caused by optic canal fractures (OCF) can result in severe visual impairment, even blindness. Timely and accurate diagnosis and treatment are crucial for preserving visual function. However, diagnosing OCF can be challenging for inexperienced clinicians due to atypical OCF changes in imaging studies and variability in optic canal anatomy. This study aimed to develop an artificial intelligence (AI) image recognition system for OCF to assist in diagnosing OCF and segmenting important anatomical structures in the orbital apex.

Methods: Using the YOLOv7 neural network, we implemented OCF localization and assessment in CT images. To achieve more accurate segmentation of key anatomical structures, such as the internal carotid artery, cavernous sinus, and optic canal, we introduced Selective Kernel Convolution and Transformer encoder modules into the original UNet structure.

Results: The YOLOv7 model achieved an overall precision of 79.5%, recall of 74.3%, F1 score of 76.8%, and mAP@0.5 of 80.2% in OCF detection. For segmentation tasks, the improved UNet model achieved a mean Intersection over Union (mIoU) of 92.76% and a mean Dice coefficient (mDice) of 90.19%, significantly outperforming the original UNet. Assisted by AI, ophthalmology residents improved their diagnostic AUC-ROC from 0.576 to 0.795 and significantly reduced diagnostic time.

Conclusion: This study developed an AI-based system for the diagnosis and treatment of optic canal fractures. The system not only enhanced diagnostic accuracy and reduced surgical collateral damage but also laid a solid foundation for the continuous development of future intelligent surgical robots and advanced smart healthcare systems.

基于人工智能的视神经管骨折自动检测及眶尖解剖结构识别与分割。
背景与目的:视神经管骨折(OCF)引起的外伤性视神经病变(TON)可导致严重的视力损害,甚至失明。及时准确的诊断和治疗是保护视力的关键。然而,由于影像研究中的非典型OCF变化和视神经管解剖的可变性,对于缺乏经验的临床医生来说,诊断OCF可能具有挑战性。本研究旨在开发OCF的人工智能图像识别系统,以辅助OCF的诊断和眶尖重要解剖结构的分割。方法:利用YOLOv7神经网络对CT图像进行OCF定位和评估。为了实现颈内动脉、海绵窦、视神经管等关键解剖结构的更精确分割,我们在原始UNet结构中引入了选择性核卷积和变压器编码器模块。结果:YOLOv7模型在OCF检测中的总体准确率为79.5%,召回率为74.3%,F1评分为76.8%,mAP@0.5为80.2%。对于分割任务,改进的UNet模型实现了92.76%的平均交联(Intersection over Union, mIoU)和90.19%的平均骰子系数(Dice coefficient, mdevice),显著优于原始UNet。在人工智能的辅助下,眼科住院医师的诊断AUC-ROC从0.576提高到0.795,诊断时间明显缩短。结论:本研究开发了一种基于人工智能的视神经管骨折诊断和治疗系统。该系统不仅提高了诊断准确性,减少了手术附带损伤,而且为未来智能手术机器人和先进智能医疗系统的不断发展奠定了坚实的基础。
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来源期刊
Frontiers in Cell and Developmental Biology
Frontiers in Cell and Developmental Biology Biochemistry, Genetics and Molecular Biology-Cell Biology
CiteScore
9.70
自引率
3.60%
发文量
2531
审稿时长
12 weeks
期刊介绍: Frontiers in Cell and Developmental Biology is a broad-scope, interdisciplinary open-access journal, focusing on the fundamental processes of life, led by Prof Amanda Fisher and supported by a geographically diverse, high-quality editorial board. The journal welcomes submissions on a wide spectrum of cell and developmental biology, covering intracellular and extracellular dynamics, with sections focusing on signaling, adhesion, migration, cell death and survival and membrane trafficking. Additionally, the journal offers sections dedicated to the cutting edge of fundamental and translational research in molecular medicine and stem cell biology. With a collaborative, rigorous and transparent peer-review, the journal produces the highest scientific quality in both fundamental and applied research, and advanced article level metrics measure the real-time impact and influence of each publication.
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